Attribute-based access control (ABAC) SDK for Python.
- Description
- Concepts
- Install
- Usage
- Components
- Caching
- JSON
- Logging
- Examples
- Milestones
- Benchmark
- Acknowledgements
- Development
- License
Vakt is an attribute-based and policy-based access control (ABAC) toolkit that is based on policies. ABAC stands aside of RBAC and ACL models, giving you a fine-grained control on definition of the rules that restrict an access to resources and is generally considered a "next generation" authorization model. In its form Vakt resembles IAM Policies, but has a way nicer attribute managing.
See concepts section for more details.
Given you have some set of resources, you can define a number of policies that will describe access to them answering the following questions:
- What resources (resource) are being requested?
- Who is requesting the resource?
- What actions (action) are requested to be done on the asked resources?
- What are the rules that should be satisfied in the context of the request itself?
- What is resulting effect of the answer on the above questions?
The overall diagram of vakt
workflow is:
Vakt allows you to gain:
- Policy Based Access Control (vakt is based on Policies that describe access rules, strategies to your resources)
- Fine-Grained Authorization (vakt Policies give you fine-grained control over resource's, subject's, action's and context's attributes)
- Dynamic Authorization Management (you can add Policies and change their attributes)
- Externalized Authorization Management (you can build own external AuthZ server with vakt, see examples)
Vakt runs on Python >= 3.4.
PyPy implementation is supported as well.
For in-memory storage:
pip install vakt
For MongoDB storage:
pip install vakt[mongo]
For SQL storage:
pip install vakt[sql]
A quick dive-in:
import vakt
from vakt.rules import Eq, Any, StartsWith, And, Greater, Less
policy = vakt.Policy(
123456,
actions=[Eq('fork'), Eq('clone')],
resources=[StartsWith('repos/Google', ci=True)],
subjects=[{'name': Any(), 'stars': And(Greater(50), Less(999))}],
effect=vakt.ALLOW_ACCESS,
context={'referer': Eq('https://github.com')},
description="""
Allow to fork or clone any Google repository for
users that have > 50 and < 999 stars and came from Github
"""
)
storage = vakt.MemoryStorage()
storage.add(policy)
guard = vakt.Guard(storage, vakt.RulesChecker())
inq = vakt.Inquiry(action='fork',
resource='repos/google/tensorflow',
subject={'name': 'larry', 'stars': 80},
context={'referer': 'https://github.com'})
assert guard.is_allowed(inq)
For more examples see here.
Policy is a main object for defining rules for accessing resources. The main parts reflect questions described in Concepts section:
- resources - a list of resources. Answers: what is asked?
- subjects - a list of subjects. Answers: who asks access to resources?
- actions - a list of actions. Answers: what actions are asked to be performed on resources?
- context - rules that should be satisfied by the given inquiry's context.
- effect - If policy matches all the above conditions, what effect does it imply?
Can be either
vakt.ALLOW_ACCESS
orvakt.DENY_ACCESS
All resources
, subjects
and actions
are described with
a list containing strings, regexes, Rules or dictionaries of strings (attributes) to Rules.
Each element in list acts as logical OR. Each key in a dictionary of Rules acts as logical AND.
context
can be described only with a dictionary of Rules.
Depending on a way resources
, subjects
, actions
are described, Policy can have either
String-based or Rule-based type. Can be inspected by policy.type
.
This enforces the use of a concrete Checker implementation. See Checker for more.
from vakt import Policy, ALLOW_ACCESS
from vakt.rules import CIDR, Any, Eq, NotEq, In
# Rule-based policy (defined with Rules and dictionaries of Rules)
Policy(
1,
description="""
Allow access to administration interface subcategories: 'panel', 'switch' if user is not
a developer and came from local IP address.
""",
actions=[Any()],
resources=[{'category': Eq('administration'), 'sub': In(['panel', 'switch'])}],
subjects=[{'name': Any(), 'role': NotEq('developer')}],
effect=ALLOW_ACCESS,
context={'ip': CIDR('127.0.0.1/32')}
)
# String-based policy (defined with regular expressions)
Policy(
2,
description="""
Allow all readers of the book library whose surnames start with M get and read any book or magazine,
but only when they connect from local library's computer
""",
effect=ALLOW_ACCESS,
subjects=['<[\w]+ M[\w]+>'],
resources=('library:books:<.+>', 'office:magazines:<.+>'),
actions=['<read|get>'],
context={'ip': CIDR('192.168.2.0/24')}
)
Basically you want to create some set of Policies that encompass access rules for your domain and store them for making future decisions by the Guard component.
st = MemoryStorage()
for p in policies:
st.add(p)
Additionally you can create Policies with predefined effect classes:
from vakt import PolicyAllow, PolicyDeny, ALLOW_ACCESS, DENY_ACCESS
p = PolicyAllow(1, actions=['<read|get>'], resources=['library:books:<.+>'], subjects=['<[\w]+ M[\w]+>'])
assert ALLOW_ACCESS == p.effect
p = PolicyDeny(2, actions=['<read|get>'], resources=['library:books:<.+>'], subjects=['<[\w]+ M[\w]+>'])
assert DENY_ACCESS == p.effect
Inquiry is an object that serves as a mediator between Vakt and outer world request for resource access. All you need
to do is take any kind of incoming request (REST request, SOAP, etc.) and build an Inquiry
out of it in order to
feed it to Vakt. There are no concrete builders for Inquiry from various request types, since it's a very meticulous
process and you have hands on control for doing it by yourself. Let's see an example:
from vakt import Inquiry
from flask import request, session
...
# if policies are defined on some subject's and resource's attributes with dictionaries of Rules:
inquiry2 = Inquiry(subject={'login': request.form['username'], 'role': request.form['user_role']},
action=request.form['action'],
resource={'book': session.get('book'), 'chapter': request.form['chapter']},
context={'ip': request.remote_addr})
# if policies are defined with strings or regular expressions:
inquiry = Inquiry(subject=request.form['username'],
action=request.form['action'],
resource=request.form['page'],
context={'ip': request.remote_addr})
Here we are taking form params from Flask request and additional request information. Then we transform them to Inquiry. That's it.
Inquiry has several constructor arguments:
- resource - any | dictionary of str -> any. What resource is being asked to be accessed?
- action - any | dictionary str -> any. What is being asked to be done on the resource?
- subject - any | dictionary str -> any. Who asks for it?
- context - dictionary str -> any. What is the context of the request?
If you were observant enough you might have noticed that Inquiry resembles Policy, where Policy describes multiple variants of resource access from the owner side and Inquiry describes an concrete access scenario from consumer side.
Rules allow you to describe conditions directly on action
, subject
, resource
and context
or on their attributes.
If at least one Rule in the Rule-set is not satisfied Inquiry is rejected by given Policy.
Attaching a Rule-set to a Policy is simple. Here are some examples:
from vakt import Policy, rules
Policy(
...,
subjects=[{'name': rules.Eq('Tommy')}],
),
Policy(
...,
actions=[rules.Eq('get'), rules.Eq('list'), rules.Eq('read')],
),
Policy(
...,
context={
'secret': rules.string.Equal('.KIMZihH0gsrc'),
'ip': rules.net.CIDR('192.168.0.15/24')
},
)
There are a number of different Rule types, see below.
If the existing Rules are not enough for you, feel free to define your own.
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
Eq | 'age': Eq(40) |
'age': 40 |
|
NotEq | 'age': NotEq(40) |
'age': 40 |
|
Greater | 'height': Greater(6.2) |
'height': 5.8 |
|
Less | 'height': Less(6.2) |
'height': 5.8 |
|
GreaterOrEqual | 'stars': GreaterOrEqual(300) |
'stars': 77 |
|
LessOrEqual | 'stars': LessOrEqual(300) |
'stars': 300 |
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
Truthy | 'admin': Truthy() |
'admin': user.is_admin() |
Evaluates on Inquiry creation |
Falsy | 'admin': Falsy() |
'admin': lambda x: x.is_admin() |
Evaluates on Inquiry creation |
Not | 'age': Not(Greater(90)) |
'age': 40 |
|
And | 'stars': And(Greater(50), Less(89)) |
'stars': 78 |
Also, attributes in dictionary of Rules act as AND logic |
Or | 'stars': Or(Greater(50), Less(120), Eq(8888)) |
'stars': 78 |
Also, rules in a list of, say, actions act as OR logic |
Any | actions=[Any()] |
action='get' , action='foo' |
Placeholder that fits any value |
Neither | subjects=[Neither()] |
subject='Max' , subject='Joe' |
Not very useful, left only as a counterpart of Any |
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
In | 'method': In('get', 'post') |
'method': 'get' |
|
NotIn | 'method': NotIn('get', 'post') |
'method': 'get' |
|
AllIn | 'name': AllIn('Max', 'Joe') |
'name': ['Max', 'Joe'] |
|
AllNotIn | 'name': AllNotIn('Max', 'Joe') |
'name': ['Max', 'Joe'] |
|
AnyIn | 'height': AnyIn(5.9, 7.5, 4.9) |
'height': [7.55] |
|
AnyNotIn | 'height': AnyNotIn(5.9, 7.5, 4.9) |
'height': [7.55] |
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
CIDR | 'ip': CIDR('192.168.2.0/24') |
'ip': 192.168.2.4 |
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
Equal | 'name': Equal('max', ci=True) |
'name': 'Max' |
Aliased as StrEqual . Use instead of Eq it you want string-type check and case-insensitivity |
PairsEqual | 'names': PairsEqual() |
'names': ['Bob', 'Bob'] |
Aliased as StrPairsEqual |
RegexMatch | 'file': RegexMatch(r'\.rb$') |
'file': 'test.rb' |
|
StartsWith | 'file': StartsWith('logs-') |
'file': 'logs-data-101967.log' |
Supports case-insensitivity |
EndsWith | 'file': EndsWith('.log') |
'file': 'logs-data-101967.log' |
Supports case-insensitivity |
Contains | 'file': Contains('sun') |
'file': 'observations-sunny-days.csv' |
Supports case-insensitivity |
Inquiry-related rules are useful if you want to express equality relation between inquiry elements or their attributes.
Rule | Example in Policy | Example in Inquiry | Notes |
---|---|---|---|
SubjectMatch | resources=[{'id': SubjectMatch()}] |
Inquiry(subject='Max', resource={'id': 'Max'}) |
Works for the whole subject value or one of its attributes |
ActionMatch | subjects=[ActionMatch('id')] |
Inquiry(subject='Max', action={'method': 'get', id': 'Max'}) |
Works for the whole action value or one of its attributes |
ResourceMatch | subjects=[ResourceMatch('id')] |
Inquiry(subject='Max', resource={'res': 'book', id': 'Max'}) |
Works for the whole resource value or one of its attributes |
SubjectEqual | 'data': SubjectEqual() |
Inquiry(subject='Max') |
Works only for strings. Favor SubjectMatch |
ActionEqual | 'data': ActionEqual() |
Inquiry(action='get') |
Works only for strings. Favor ActionMatch |
ResourceIn | 'data': ResourceIn() |
Inquiry(resource='/books/') |
Works only for strings. Favor ResourceMatch |
Checker allows you to check whether Policy matches Inquiry by concrete field (subject
, action
, etc.). It's used
internally by Guard, but you should be aware of Checker types:
- RulesChecker - universal type that is used to check match of Policies defined with Rules or dictionaries of Rules (Rule-based Policy type). It gives you the highest flexibility. Most of the time you will use this type of Polices and thus this type of a Checker. Besides, it's much more performant than RegexChecker. See benchmark for more details.
from vakt import RulesChecker
ch = RulesChecker()
# etc.
- RegexChecker - checks match by regex test for policies defined with strings and regexps (String-based Policy type). This means that all you Policies can be defined in regex syntax (but if no regex defined in Policy falls back to simple string equality test) - it gives you better flexibility compared to simple strings, but carries a burden of relatively slow performance. You can configure a LRU cache size to adjust performance to your needs:
from vakt import RegexChecker
ch = RegexChecker(2048)
ch2 = RegexChecker(512)
# etc.
See benchmark for more details.
Syntax for description of Policy fields is:
'<foo.*>'
'foo<[abc]{2}>bar'
'foo<\w+>'
'foo'
Where <>
are delimiters of a regular expression boundaries part. Custom Policy can redefine them by overriding
start_tag
and end_tag
properties. Generally you always want to use the first variant: <foo.*>
.
WARNING. Please note, that storages have varying level of regexp support. For example,
most SQL databases allow to use POSIX metacharacters whereas python re
module
and thus MemoryStorage does not. So, while defining policies you're safe and sound
as long as you understand how storage of your choice handles the regexps you specified.
- StringExactChecker - the most quick checker:
Checker that uses exact string equality. Case-sensitive.
E.g. 'sun' in 'sunny' - False
'sun' in 'sun' - True
- StringFuzzyChecker - quick checker with some extent of flexibility:
Checker that uses fuzzy substring equality. Case-sensitive.
E.g. 'sun' in 'sunny' - True
'sun' in 'sun' - True
Note, that some Storage handlers can already check if Policy fits Inquiry in
find_for_inquiry()
method by performing specific to that storage queries - Storage can (and generally should)
decide on the type of actions based on the checker class passed to Guard constructor
(or to find_for_inquiry()
directly).
Regardless of the results returned by a Storage the Checker is always the last row of control before Vakt makes a decision.
Guard component is a main entry point for Vakt to make a decision. It has one method is_allowed
that passed an
Inquiry gives you a boolean answer: is that Inquiry allowed or not?
Guard is constructed with Storage and Checker.
Policies that have String-based type won't match if RulesChecker is used and vise-versa.
st = MemoryStorage()
# And persist all our Policies so that to start serving our library.
for p in policies:
st.add(p)
guard = Guard(st, RulesChecker())
if guard.is_allowed(inquiry):
return "You've been logged-in", 200
else:
return "Go away, you violator!", 401
To gain best performance read Caching section.
Storage is a component that gives an interface for manipulating Policies persistence in various places.
It provides the following methods:
add(policy) # Store a Policy
get(uid) # Retrieve a Policy by its ID
get_all(limit, offset) # Retrieve all stored Policies (with pagination)
retrieve_all(batch) # Retrieve all existing stored Policies (without pagination)
update(policy) # Store an updated Policy
delete(uid) # Delete Policy from storage by its ID
find_for_inquiry(inquiry) # Retrieve Policies that match the given Inquiry
Storage may have various backend implementations (RDBMS, NoSQL databases, etc.), they also may vary in performance characteristics, so see Caching and Benchmark sections.
Vakt ships some Storage implementations out of the box. See below:
Implementation that stores Policies in memory. It's not backed by any file or something, so every restart of your application will swipe out everything that was stored. Useful for testing.
from vakt import MemoryStorage
storage = MemoryStorage()
MongoDB is chosen as the most popular and widespread NO-SQL database.
from pymongo import MongoClient
from vakt.storage.mongo import MongoStorage
client = MongoClient('localhost', 27017)
storage = MongoStorage(client, 'database-name', collection='optional-collection-name')
Default collection name is 'vakt_policies'.
Actions are the same as for any Storage that conforms interface of vakt.storage.abc.Storage
base class.
Beware that currently MongoStorage supports indexed and filtered-out find_for_inquiry()
only for
StringExact, StringFuzzy and Regex (since MongoDB version 4.2 and onwards) checkers.
When used with the RulesChecker it simply returns all the Policies from the database.
SQL storage is backed by SQLAlchemy, thus it should support any RDBMS available for it: MySQL, Postgres, Oracle, MSSQL, Sqlite, etc.
Example for MySQL.
from sqlalchemy import create_engine
from sqlalchemy.orm import sessionmaker, scoped_session
from vakt.storage.sql import SQLStorage
engine = create_engine('mysql://root:root@localhost/vakt_db')
storage = SQLStorage(scoped_session=scoped_session(sessionmaker(bind=engine)))
# Don't forget to run migrations here (especially for the first time)
...
Beware that currently SQLStorage supports indexed and filtered-out find_for_inquiry()
only for
StringExact, StringFuzzy and Regex checkers.
When used with the RulesChecker it simply returns all the Policies from the database.
Note that vakt focuses on testing SQLStorage functionality only for two most popular open-source databases: MySQL and Postgres. Other databases support may have worse performance characteristics and/or bugs. Feel free to report any issues.
vakt.migration
is a set of components that are useful from the perspective of the Storage.
It's recommended to favor it over manual actions on DB schema/data
since it's aware of Vakt requirements to Policies data. But it's not mandatory, anyway.
However it's up to a particular Storage to decide whether it needs migrations or not.
It consists of 3 components:
Migration
MigrationSet
Migrator
Migration
allows you to describe data modifications between versions.
Each storage can have a number of Migration
classes to address different releases with the order of the migration
specified in order
property.
Should be located inside particular storage module and implement vakt.storage.migration.Migration
.
Migration has 2 main methods (as you might guess) and 1 property:
up
- runs db "schema" upwardsdown
- runs db "schema" downwards (rolls back the actions ofup
)order
- tells the number of the current migration in a row
MigrationSet
is a component that represents a collection of Migrations for a Storage.
You should define your own migration-set. It should be located inside particular storage module and implement
vakt.storage.migration.MigrationSet
. It has 3 methods that lest unimplemented:
migrations
- should return all initialized Migration objectssave_applied_number
- saves a number of a lst applied up migration in the Storage for later referencelast_applied
- returns a number of a lst applied up migration from the Storage
Migrator
is an executor of a migrations. It can execute all migrations up or down, or execute a particular migration
if number
argument is provided.
Example usage:
from pymongo import MongoClient
from vakt.storage.mongo import MongoStorage, MongoMigrationSet
from vakt.storage.migration import Migrator
client = MongoClient('localhost', 27017)
storage = MongoStorage(client, 'database-name', collection='optional-collection-name')
migrator = Migrator(MongoMigrationSet(storage))
migrator.up()
...
migrator.down()
...
migrator.up(number=2)
...
migrator.down(number=2)
Vakt has several layers of caching, that serve a single purpose: speed up policy enforcement decisions. In most situations and use-cases you might want to use them all, thus they are designed not to interact with each other, but rather work in tandem (nonetheless you are free to use any single layer alone or any combination of them). That said let's look at all those layers.
Caching RegexChecker
It's relevant only for RegexChecker
and allows to cache parsing and execution of regex-defined Policies,
which can be very expensive
due to inherently slow computational performance of regular expressions and vakt's parsing. When creating a RegexChecker
you can specify a cache size for an in-memory
LRU (least recently used) cache. Currently
only python's native LRU cache is supported.
# preferably size is a power of 2
chk = RegexChecker(cache_size=2048)
# or simply
chk = RegexChecker(2048)
# or 512 by default
chk = RegexChecker()
Some vakt's Storages may be not very clever at filtering Policies at find_for_inquiry
especially when dealing with
Rule-based policies. In this case they return the whole set of the existing policies stored in the external storage.
Needless to say that it makes your application very heavy IO-bound and decreases performance for large policy sets
drastically. See benchmark for more details and exact numbers.
In such a case you can use EnfoldCache
that wraps your main storage (e.g. MongoStorage) into another one
(it's meant to be some in-memory Storage). It returns you a Storage that behind the scene routes all the read-calls
(get, get_all, find_for_inquiry, ...) to an in-memory one and all modify-calls (add, update, delete) to your main Storage (
don't worry, in-memory Storage is kept up-to date with the main Storage). In case a requested policy is not found in in-memory Storage
it's considered a cache miss and a request is routed to a main Storage.
Also, in order to keep Storages in sync,
when you initialize EnfoldCache
the in-memory Storage will fetch all the existing Policies from a main one -
therefore be forewarned that it might take some amount of time depending on the size of a policy-set.
Optionally you can call populate
method after initialization, but in this case do not ever call any modify-related methods of
EnfoldCache'd storage before populate()
, otherwise Storages will be in an unsynchronized state and it'll
result in broken Guard
functionality.
from vakt import EnfoldCache, MemoryStorage, Policy, Guard, RegexChecker
from vakt.storage.mongo import MongoStorage
storage = EnfoldCache(MongoStorage(...), cache=MemoryStorage())
storage.add(Policy(1, actions=['get']))
...
guard = Guard(storage, RegexChecker())
Guard.is_allowed
it the the centerpiece of vakt. Therefore it makes ultimate sense to cache it.
And create_cached_guard()
function allows you to do exactly that. You need to pass it a Storage, a Checker and a
maximum size of a cache. It will return you a tuple of: Guard, Storage and AllowanceCache instance:
- You must do all policies operations with the returned storage (which is a slightly enhanced version of a Storage you provided to the function).
- The returned Guard is a normal vakt's
Guard
, but itsis_allowed
is cached withAllowaceCache
. - The returned cache is an instance of
AllowaceCache
and has a handy methodinfo
that provides current state of the cache.
How it works?
Only the first Inquiry will be passed to is_allowed
, all the subsequent answers for similar Inquiries will be taken
from cache. AllowanceCache
is rather coarse-grained and if you call Storage's add
, update
or delete
the whole
cache will be invalided because the policy-set has changed. However for stable policy-sets it is a good performance boost.
By default AllowanceCache
uses in-memory LRU cache and maxsize
param is it's size. If for some reason it does not satisfy
your needs, you can pass your own implementation of a cache backend that is a subclass of
vakt.cache.AllowanceCacheBackend
to create_cached_guard
as a cache
keyword argument.
guard, storage, cache = create_cached_guard(MongoStorage(...), RulesChecker(), maxsize=256)
p1 = Policy(1, actions=[Eq('get')], resources=[Eq('book')], subjects=[Eq('Max')], effect=ALLOW_ACCESS)
storage.add(p1)
# Given we have some inquiries that tend to repeat
inq1 = Inquiry(action='get', resource='book', subject='Max')
inq2 = Inquiry(action='get', resource='book', subject='Jamey')
assert guard.is_allowed(inq1)
assert guard.is_allowed(inq1)
assert guard.is_allowed(inq1)
assert not guard.is_allowed(inq2)
assert guard.is_allowed(inq1)
assert guard.is_allowed(inq1)
# You can check cache state
assert 4 == cache.info().hits
assert 2 == cache.info().misses
assert 2 == cache.info().currsize
All Policies, Inquiries and Rules can be JSON-serialized and deserialized.
For example, for a Policy all you need is just run:
from vakt.policy import Policy
policy = Policy('1')
json_policy = policy.to_json()
print(json_policy)
# {"actions": [], "description": null, "effect": "deny", "uid": "1",
# "resources": [], "context": {}, "subjects": []}
policy = Policy.from_json(json_policy)
print(policy)
# <vakt.policy.Policy object at 0x1023ca198>
The same goes for Rules, Inquiries.
All custom classes derived from them support this functionality as well.
If you do not derive from Vakt's classes, but want this option, you can mix-in vakt.util.JsonSerializer
class.
from vakt.util import JsonSerializer
class CustomInquiry(JsonSerializer):
pass
Vakt follows a common logging pattern for libraries:
Its corresponding modules log all the events that happen but the log messages by default are handled by NullHandler
.
It's up to the outer code/application to provide desired log handlers, filters, levels, etc.
For example:
import logging
root = logging.getLogger()
root.setLevel(logging.INFO)
root.addHandler(logging.StreamHandler())
... # here go all the Vakt calls.
Vakt logs can be comprehended in 2 basic levels:
- Error/Exception - informs about exceptions and errors during Vakt work.
- Info - informs about incoming inquires and their resolution.
Most valuable features to be implemented in the order of importance:
- SQL Storage
- Rules that reference Inquiry data for Rule-based policies
- Caching mechanisms (for Storage and Guard)
- YAML-based language for declarative policy definitions
- Enhanced audit logging
- Redis Storage
You can see how much time it takes for a single Inquiry to be processed given we have a number of unique Policies in a Storage. For MemoryStorage it measures the runtime of a decision-making process for all the existing Policies when Guard's code iterates the whole list of Policies to decide if Inquiry is allowed or not. In case of other Storages the mileage may vary since they may return a smaller subset of Policies that fit the given Inquiry. Don't forget that most external Storages add some time penalty to perform I/O operations. The runtime also depends on a Policy-type used (and thus checker): RulesChecker performs much better than RegexChecker.
Example:
python3 benchmark.py --checker regex --storage memory -n 1000
Output is:
Populating MemoryStorage with Policies
......................
START BENCHMARK!
Number of unique Policies in DB: 1,000
Among them Policies with the same regexp pattern: 0
Checker used: RegexChecker
Decision for 1 Inquiry took: 0.4451 seconds
Inquiry passed the guard? False
Script usage:
usage: benchmark.py [-h] [-n [POLICIES_NUMBER]] [-s {mongo,memory,sql}]
[-d [SQL_DSN]] [-c {regex,rules,exact,fuzzy}] [--regexp]
[--same SAME] [--cache CACHE]
Run vakt benchmark.
optional arguments:
-h, --help show this help message and exit
-n [POLICIES_NUMBER], --number [POLICIES_NUMBER]
number of policies to create in DB (default: 100000)
-s {mongo,memory,sql}, --storage {mongo,memory,sql}
type of storage (default: memory)
-d [SQL_DSN], --dsn [SQL_DSN]
DSN connection string for sql storage (default:
sqlite:///:memory:)
-c {regex,rules,exact,fuzzy}, --checker {regex,rules,exact,fuzzy}
type of checker (default: regex)
regex policy related:
--regexp should Policies be defined without Regex syntax?
(default: True)
--same SAME number of similar regexps in Policy
--cache CACHE number of LRU-cache for RegexChecker (default:
RegexChecker's default cache-size)
Initial code ideas of Vakt are based on Amazon IAM Policies and Ladon Policies SDK as its reference implementation.
To hack Vakt locally run:
$ ... # activate virtual environment w/ preferred method (optional)
$ pip install -e .[dev,mongo,sql] # to install all dependencies
$ pytest -m "not integration" # to run non-integration tests with coverage report
$ pytest --cov=vakt tests/ # to get coverage report
$ pylint vakt # to check code quality with PyLint
To run only integration tests (for Storage adapters other than MemoryStorage
):
$ docker run --rm -d -p 27017:27017 mongo
$ pytest -m integration
Optionally you can use make
to perform development tasks.
The source code is licensed under Apache License Version 2.0